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首页> 外文期刊>Hydrology and Earth System Sciences >Socio-hydrological data assimilation: analyzing human–flood interactions by model–data integration
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Socio-hydrological data assimilation: analyzing human–flood interactions by model–data integration

机译:社会水文数据同化:通过模型 - 数据集成分析人洪互动

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摘要

In socio-hydrology, human–water interactions are simulated by mathematical models. Although the integration of these socio-hydrological models and observation data is necessary for improving the understanding of human–water interactions, the methodological development of the model–data integration in socio-hydrology is in its infancy. Here we propose applying sequential data assimilation, which has been widely used in geoscience, to a socio-hydrological model. We developed particle filtering for a widely adopted flood risk model and performed an idealized observation system simulation experiment and a real data experiment to demonstrate the potential of the sequential data assimilation in socio-hydrology. In these experiments, the flood risk model's parameters, the input forcing data, and empirical social data were assumed to be somewhat imperfect. We tested if data assimilation can contribute to accurately reconstructing the historical human–flood interactions by integrating these imperfect models and imperfect and sparsely distributed data. Our results highlight that it is important to sequentially constrain both state variables and parameters when the input forcing is uncertain. Our proposed method can accurately estimate the model's unknown parameters – even if the true model parameter temporally varies. The small amount of empirical data can significantly improve the simulation skill of the flood risk model. Therefore, sequential data assimilation is useful for reconstructing historical socio-hydrological processes by the synergistic effect of models and data.
机译:在社会水文中,通过数学模型模拟人水相互作用。尽管这些社会水文模型和观察数据的整合是改善对人水相互作用的理解,但社会水文中模型 - 数据集成的方法论发展是其初期的。在这里,我们提出了在社会水文模型中广泛应用于地球科学的顺序数据同化。我们开发了广泛采用的洪水风险模型的粒子滤波,并进行了理想化的观察系统仿真实验和实际数据实验,以证明社会水文中顺序数据同化的潜力。在这些实验中,假设洪水风险模型的参数,输入强制数据和经验社交数据有所不完美。我们通过集成这些不完美模型和不完美和稀疏分布数据来准确地重建历史人类泛滥交互的数据同化可以有助于准确地重建历史人类洪水相互作用。我们的结果突出显示,当输入强制不确定时,依次限制状态变量和参数非常重要。我们所提出的方法可以准确估计模型的未知参数 - 即使真正的模型参数在时间上变化。少量经验数据可以显着提高洪水风险模型的模拟技能。因此,顺序数据同化对于通过模型和数据的协同效应来重建历史社会水文过程。

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